Mars Innovation Technology builds predictive maintenance models, computer vision quality control systems, and AI-powered operational intelligence platforms for manufacturers — connected to your existing SCADA, MES, and IoT infrastructure.
Predictive maintenance AI reduces unplanned downtime by 25–45% by detecting failures before they occur.
Computer vision quality inspection achieves <0.1% defect escape rate on production lines.
Integrates with existing SCADA, MES, historian (OSIsoft PI, Aveva), and IIoT platforms.
Compliant with IEC 62443 industrial cybersecurity standards. Fixed price, 8–14 weeks.
Unplanned equipment downtime costs manufacturing companies an average of $260,000 per hour according to Aberdeen Group research. Traditional time-based maintenance schedules either over-maintain (wasting budget) or under-maintain (causing failures). Neither approach uses the sensor data your equipment is already generating to predict when maintenance is actually needed.
Manual visual quality inspection is slow, inconsistent, and expensive. Inspectors fatigue, inspection rates are limited by human throughput, and defects that escape to customers cost 10–100× more to fix than defects caught in-line. Computer vision systems now consistently outperform human inspectors on standard defect types at a fraction of the per-unit cost.
Unplanned downtime events costing $50K–$500K per incident with no advance warning.
Preventive maintenance schedules based on calendar time, not equipment condition.
Manual quality inspection throughput limits production line speed.
Defect escape rate above 0.5% causing customer returns and warranty claims.
Equipment sensor data collected by SCADA/historian but never analysed for patterns.
A production-ready, fixed-price engagement — from architecture to deployment to support.
ML models trained on your historian data detect anomalies and predict equipment failure 48–168 hours in advance with actionable maintenance recommendations.
Deep learning vision models deployed on production lines — detecting surface defects, dimensional non-conformance, and assembly errors at line speed.
Real-time OEE, MTBF, MTTR, and yield dashboards aggregated from SCADA, MES, and ERP — with AI-driven root cause suggestions.
Edge-to-cloud data pipeline ingesting time-series sensor data from PLCs, historians (OSIsoft PI, Aveva, InfluxDB) and IoT gateways.
Industrial cybersecurity architecture aligned with IEC 62443 — network segmentation, OT/IT boundary controls, and secure remote access.
Asset digital twin models that aggregate real-time sensor data, maintenance history, and AI predictions for each piece of critical equipment.
25–45%
Unplanned downtime reduction from predictive maintenance. (Aberdeen, 2023)
<0.1%
Computer vision quality inspection on standard defect types.
3–5×
Vision inspection vs. manual inspection at equivalent accuracy.
15–25%
Condition-based maintenance vs. time-based schedules.
Transparent weekly milestones so you always know what is happening and what comes next.
Every tier is fixed-scope and fixed-price. Start small and scale when ready.
From $4,000
1–2 weeks
OT/IT architecture review, sensor data quality assessment, and AI use-case prioritisation for your plant.
From $15,000
3–4 weeks
Deploy predictive maintenance or computer vision for one asset class or production line.
From $42,000
8–12 weeks
Production predictive maintenance, computer vision QC, and operational intelligence platform for your facility.
From $75,000
14–20 weeks
Multi-site industrial AI platform with digital twin foundation, supply chain AI, and enterprise integration.
From $7,000/mo
Ongoing
Managed industrial AI operations — model monitoring, retraining, anomaly alert response and monthly reports.
Compared to generic consultancies and do-it-yourself approaches.
| Feature | Mars Innovation Technology | Generic Consultancy | DIY / In-House |
|---|---|---|---|
Trained on your sensor history | ✓ | Generic models | ✗ |
Computer vision QC included | ✓ | Separate product | Complex |
IEC 62443 compliance | ✓ | Varies | ✗ |
Fixed price & timeline | ✓ | ✗ | ✗ |
Historian integration (PI, Aveva) | ✓ | Extra cost | Manual |
OT/IT network security | ✓ | Extra cost | ✗ |
Ongoing managed option | ✓ | ✓ | ✗ |
It is a fixed-price engagement that deploys predictive maintenance AI, computer vision quality control, and an operational intelligence dashboard for manufacturing facilities — integrated with your existing SCADA, MES and historian systems in 8–12 weeks.
We build ML models trained on your historian time-series sensor data (vibration, temperature, pressure, current) to detect anomalies that precede equipment failures. The model generates maintenance recommendations with a lead time of 48–168 hours, giving your maintenance team time to schedule planned repairs.
IEC 62443 is the international standard for industrial cybersecurity. When AI systems connect to OT networks (PLCs, SCADA, historians), they must be implemented with proper network segmentation, access controls and secure communication — or they create new attack surfaces in your production environment. Our architecture is compliant with IEC 62443 Zone and Conduit model.
OSIsoft PI (now AVEVA PI System), AVEVA Historian, InfluxDB, Wonderware Historian, and Ignition MQTT are all supported. We also work with raw PLC data via OPC-UA and MQTT brokers.
We work with your quality team to collect a labelled image dataset of defect and non-defect examples from your production line. For new defect types with limited examples, we use data augmentation and transfer learning from industrial vision models to achieve production-ready accuracy with as few as 500 labelled examples per class.
For computer vision, cameras and edge inference hardware are required. We provide hardware specifications based on your production line speed, lighting conditions and defect types, and work with your existing hardware vendors where possible. For predictive maintenance, no new hardware is needed if sensor data is already being collected by your historian.
Predictive maintenance alerts are sent to your CMMS (Maximo, SAP PM, eMaint) as work order recommendations, and optionally to your operators via the dashboard, email or SMS. We integrate with your existing maintenance scheduling workflow rather than replacing it.
Monthly model drift monitoring, retraining on new sensor data and defect examples, alert threshold tuning as equipment ages, and a monthly performance report showing downtime prevented, defects caught, and maintenance cost avoided.